ArXiv TLDR

An Empirical Analysis of Mobile Energy Consumption Across User Configurations

🐦 Tweet
2604.25587

Wellington Oliveira

cs.SE

TLDR

This paper empirically analyzes how user-controlled settings and app-specific variables impact mobile device energy consumption across popular apps.

Key contributions

  • Quantifies energy impact of user-controlled settings like screen brightness, refresh rate, and connectivity.
  • Examines app-specific variables such as video resolution and message size across popular apps (WhatsApp, TikTok, YouTube).
  • Utilized an automated monitoring framework and realistic usage patterns for systematic evaluation.
  • Analyzed over 12,000 data points to reveal real-world trade-offs between user experience and battery life.

Why it matters

This research provides rigorous, data-driven insights into how end-user configurations affect mobile battery life, moving beyond anecdotal advice. It helps users make informed decisions to optimize device autonomy, balancing user experience with energy savings.

Original Abstract

Mobile devices have become ubiquitous tools for communication, entertainment, and productivity, yet battery autonomy remains a constraint. While energy-saving tips exist, they are often generic, anecdotal, or focused on software development rather than end-user behavior, leaving users to rely on grey literature or tacit knowledge to optimize their device energy consumption, lacking the academic rigor to ensure their effectiveness. This research aims to bridge the gap between technical energy analysis and practical user application by quantifying the energy consumption of different user-controlled parameters. Employing an automated monitoring framework, a series of user interface tests that simulate realistic usage patterns across popular applications (i.e., WhatsApp, Instagram, TikTok, and YouTube) was conducted. The objective is to have a systematic evaluation of the energy impact of user-controllable factors, including device settings, such as screen brightness, refresh rate, connectivity status, interface themes, and battery-saving profiles, combined with more app-specific variables (e.g., video resolution and message size). By analyzing over 12,000 data points, this paper quantifies the real-world impact of common settings, revealing the trade-offs between user experience and device autonomy.

📬 Weekly AI Paper Digest

Get the top 10 AI/ML arXiv papers from the week — summarized, scored, and delivered to your inbox every Monday.